Please use this identifier to cite or link to this item: https://scholarbank.nus.edu.sg/handle/10635/69416
Title: ANN based internal model approach to motor learning for humanoid robot
Authors: Xu, J.-X. 
Wang, W.
Vadakkepat, P. 
Yee, L.W.
Keywords: Motor learning
Movement generation
Multiple internal model
Spacial and temporal scalabilities
Issue Date: 2006
Citation: Xu, J.-X.,Wang, W.,Vadakkepat, P.,Yee, L.W. (2006). ANN based internal model approach to motor learning for humanoid robot. IEEE International Conference on Neural Networks - Conference Proceedings : 4179-4186. ScholarBank@NUS Repository.
Abstract: In this paper, we present an approach to motor skill learning based on internal models. By pursuing the temporal and spatial scalability of internal models, we first investigate the possibility of generating similar movement patterns directly via the same internal model with the minimum changes in the internal model parameters, and avoid the reinforcement learning. Next, we consider more complex movements for which different internal models are needed. Based on the task decomposition, all movements can be classified into the sequential and parallel DMPs. The former requires a number of IMs to work sequentially so that a sophisticated motor behavior can be performed. The latter also requires a number of IMs to work in parallel to generate the needed movement patterns. To mimic the human limb behavior, a two-link robot arm is used as the first prototype to perform the motor learning process of letter writing. A FUJITSU HOAP-1 humanoid robot is used as the second prototype and the upper limb movement is conducted in real-time, which further validates the effectiveness of multiple internal model approach for motor learning. © 2006 IEEE.
Source Title: IEEE International Conference on Neural Networks - Conference Proceedings
URI: http://scholarbank.nus.edu.sg/handle/10635/69416
ISBN: 0780394909
ISSN: 10987576
Appears in Collections:Staff Publications

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